Beyond Language: Inside a Hundred-Trillion-Token Video Model
AI + a16z3 Heinä 2024

Beyond Language: Inside a Hundred-Trillion-Token Video Model

In this episode of the AI + a16z podcast, Luma Chief Scientist Jiaming Song joins a16z General Partner Anjney MIdha to discuss Jiaming's esteemed career in video models, culminating thus far in Luma's recently released Dream Machine 3D model that shows abilities to reason about the world across a variety of aspects. Jiaming covers the history of image and video models, shares his vision for the future of multimodal models, and explains why he thinks Dream Machine demonstrates its emergent reasoning capabilities. In short: Because it was trained on a volume of high-quality video data that, if measured in relation to language data, would amount to hundreds of trillions of tokens.

Here's a sample of the discussion, where Jiaming explains the "bitter lesson" as applied to training generative models, and in the process sums up a big component of why Dream Machine can do what it does by using context-rich video data:

"For a lot of the problems related to artificial intelligence, it is often more productive in the long run to use methods that are simpler but use more compute, [rather] than trying to develop priors, and then trying to leverage the priors so that you can use less compute.

"Cases in this question first happened in language, where people were initially working on language understanding, trying to use grammar or semantic parsing, these kinds of techniques. But eventually these tasks began to be replaced by large language models. And a similar case is happening in the vision domain, as well . . . and now people have been using deep learning features for almost all the tasks. This is a clear demonstration of how using more compute and having less priors is good.

"But how does it work with language? Language by itself is also a human construct. Of course, it is a very good and highly compressed kind of knowledge, but it's definitely a lot less data than what humans take in day to day from the real world . . .

"[And] it is a vastly smaller data set size than visual signals. And we are already almost exhausting the . . . high-quality language sources that we have in the world. The speed at which humans can produce language is definitely not enough to keep up with the demands of the scaling laws. So even if we have a world where we can scale up the compute infrastructure for that, we don't really have the infrastructure to scale up the data efforts . . .

"Even though people would argue that the emergence of large language models is already evidence of the scaling law . . . against the rule-based methods in language understanding, we are arguing that language by itself is also a prior in the face of more of the richer data signal that is happening in the physical world."

Learn more:

Dream Machine

Jiaming's personal site

Luma careers

The bitter lesson

Follow everyone on X:

Jiaming Song

Anjney Midha

Check out everything a16z is doing with artificial intelligence here, including articles, projects, and more podcasts.

Please note that the content here is for informational purposes only; should NOT be taken as legal, business, tax, or investment advice or be used to evaluate any investment or security; and is not directed at any investors or potential investors in any a16z fund. a16z and its affiliates may maintain investments in the companies discussed. For more details please see a16z.com/disclosures.


Hosted by Simplecast, an AdsWizz company. See pcm.adswizz.com for information about our collection and use of personal data for advertising.

Jaksot(85)

REPLAY: Scoping the Enterprise LLM Market

REPLAY: Scoping the Enterprise LLM Market

This is a replay of our first episode from April 12, featuring Databricks VP of AI Naveen Rao and a16z partner Matt Bornstein discussing enterprise LLM adoption, hardware platforms, and what it means ...

30 Marras 202443min

Building Developers Tools, From Docker to Diffusion Models

Building Developers Tools, From Docker to Diffusion Models

In this episode of AI + a16z, Replicate cofounder and CEO Ben Firshman, and a16z partner Matt Bornstein, discuss the art of building products and companies that appeal to software developers. Ben was ...

15 Marras 202441min

The Best Way to Achieve AGI Is to Invent It

The Best Way to Achieve AGI Is to Invent It

Longtime machine-learning researcher, and University of Washington Professor Emeritus, Pedro Domingos joins a16z General Partner Martin Casado to discuss the state of artificial intelligence, whether ...

4 Marras 202438min

Neural Nets and Nobel Prizes: AI's 40-Year Journey from the Lab to Ubiquity

Neural Nets and Nobel Prizes: AI's 40-Year Journey from the Lab to Ubiquity

In this episode of AI + a16z, General Partner Anjney Midha shares his perspective on the recent collection of Nobel Prizes awarded to AI researchers in both Physics and Chemistry. He talks through how...

25 Loka 202440min

How GPU Access Helps AI Startups Be Agile

How GPU Access Helps AI Startups Be Agile

In this episode of AI + a16z, General Partner Anjney Midha explains the forces that lead to GPU shortages and price spikes, and how the firm mitigates these concerns for portfolio companies by supplyi...

23 Loka 202439min

DisTrO and the Quest for Community-Trained AI Models

DisTrO and the Quest for Community-Trained AI Models

In this episode of AI + a16z, Bowen Peng and Jeffrey Quesnelle of Nous Research join a16z General Partner Anjney Midha to discuss their mission to keep open source AI research alive and activate the c...

27 Syys 20241h 12min

Balancing AI Expertise and Industry Acumen in Vertical Applications

Balancing AI Expertise and Industry Acumen in Vertical Applications

In this episode of AI + a16z, Ambience cofounder and chief scientist Nikhil Buduma joins Derrick Harris to discuss the nuances of using AI models to build vertical applications (including in his space...

13 Syys 202442min

AI, SQL, and the End of Big Data

AI, SQL, and the End of Big Data

In this episode of AI + a16z, a16z General Partner Jennifer Li joins MotherDuck Cofounder and CEO Jordan Tigani to discuss DuckDB's spiking popularity as the era of big data wanes, as well as the appl...

30 Elo 202433min

Suosittua kategoriassa Liike-elämä ja talous

sijotuskasti
mimmit-sijoittaa
rss-rahapodi
psykopodiaa-podcast
rss-rahamania
ostan-asuntoja-podcast
juristipodi
rss-seuraava-potilas
pomojen-suusta
taloudellinen-mielenrauha
rss-sami-miettinen-neuvottelija
leadcast
yrittaja
rss-lahtijat
rss-myyntikoulu
rss-sisalto-kuntoon
oppimisen-psykologia
rss-h-asselmoilanen
rss-bisnespaiva
rss-paasipodi